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Slice Sampling for General Completely Random Measures

机译:一般完全随机措施的切片抽样

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Completely random measures provide a principled approach to creating flexible unsupervised models, where the number of latent features is infinite and the number of features that influence the data grows with the size of the data set. Due to the infinity the latent features, posterior inference requires either marginalization—resulting in dependence structures that prevent efficient computation via parallelization and conjugacy—or finite truncation, which arbitrarily limits the flexibility of the model. In this paper we present a novel Markov chain Monte Carlo algorithm for posterior inference that adaptively sets the truncation level using auxiliary slice variables, enabling efficient, parallelized computation without sacrificing flexibility. In contrast to past work that achieved this on a model-by-model basis, we provide a general recipe that is applicable to the broad class of completely random measure-based priors. The efficacy of the proposed algorithm is evaluated on several popular nonparametric models, demonstrating a higher effective sample size per second compared to algorithms using marginalization as well as a higher predictive performance compared to models employing fixed truncations.
机译:完全随机措施提供了一个原理的方法来创建灵活的无监督模型,其中潜在功能的数量是无限的,并且影响数据的功能数量随着数据集的大小而生长的功能。由于无限潜在特征,后部推理需要边缘化 - 导致通过并行化和共轭或有限截断防止有效计算的依赖性结构,这些结构是任意限制模型的灵活性。在本文中,我们提出了一种新的Markov链蒙特卡罗算法,用于后续推理,可使用辅助切片变量自适应地设置截断水平,从而实现有效,并行化计算而不牺牲灵活性。与逐模模式实现这一目标的过去的工作相比,我们提供了一般配方,适用于广泛的完全随机测量的前瞻。在几个受欢迎的非参数模型中评估了所提出的算法的功效,与使用边缘化的算法以及与采用固定截断的模型相比,与使用边缘化的算法相比,每秒展示更高的有效样本大小。

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